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The Forecasting of Rockburst in Deep-buried Tunnel with Adaptive Neural Network

机译:具有自适应神经网络深埋隧道岩爆预测

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Taking into account internal and exterior factors of rockburst, a model using BP neural network is proposed, in which the in-situ stress, the compressive strength, the tensile strength and the elastic energy index of the cavern are chosen as criteria indexes. Some representative engineering projects at home and aboard are collected as learning and training samples, so as to improve the extensive ability of neural network, and Levenberg-Marquardt algorithm is applied to achieve better performance during the training process. The instances indicate that the evaluated results agree well with the practical records, which shows the model is effective in prediction of rockburst.
机译:考虑到摇滚爆发的内部和外部因素,提出了一种使用BP神经网络的模型,其中选择洞穴的原位应力,抗压强度,拉伸强度和穴位的弹性能量作为标准指标。在家庭和船上的一些代表工程项目被收集为学习和培训样本,从而提高神经网络的广泛能力,并应用Levenberg-Marquardt算法在培训过程中实现更好的性能。该实例表明,评估结果与实际记录普遍一致,这表明该模型在岩爆预测方面是有效的。

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